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Optimizing process parameters for selective laser sintering based on neural network and genetic algorithm

机译:基于神经网络和遗传算法的选择性激光烧结工艺参数优化

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摘要

Selective laser sintering (SLS) is an attractive rapid prototyping (RP) technology capable of manufacturing parts from a variety of materials. However, the wider application of SLS has been limited, due to their accuracy. This paper presents an optimal method to determine the best processing parameter for SLS by minimizing the shrinkage. According to the nonlinear and multitudinous processing parameter feature of SLS, the theory and the algorithms of the neural network are applied for studying SLS process parameters. The process is modeled and described by neural network based on experiment. Moreover, the optimum process parameters, such as layer thickness, hatch spacing, laser power, scanning speed, work surroundings temperature, interval time, and scanning mode are obtained by adopting the genetic algorithm based on the neural network model. The optimum process parameters will be benefit for RP users in creating RP parts with a higher level of accuracy.
机译:选择性激光烧结(SLS)是一种引人注目的快速成型(RP)技术,能够用多种材料制造零件。但是,由于它们的准确性,SLS的广泛应用受到了限制。本文提出了一种通过最小化收缩来确定SLS最佳加工参数的最佳方法。根据SLS的非线性和众多处理参数特征,将神经网络的理论和算法应用于SLS过程参数的研究。通过基于实验的神经网络对该过程进行建模和描述。此外,采用基于神经网络模型的遗传算法,获得了最佳的工艺参数,如层厚,舱口间距,激光功率,扫描速度,工作环境温度,间隔时间和扫描模式。最佳工艺参数将对RP用户有利,从而可以以更高的精度创建RP零件。

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